R Tutorial
An introduction to R
Introduction
This tutorial is will introduce the reader to , a free, open-source statistical computing environment often used with RStudio, a integrated development environment for .
R Project Logo
Download
- Download at https://www.r-project.org/
- Download
RStudioat https://rstudio.com/products/rstudio/download/
Calculator
can be used as a super awesome calculator
# 5 + 3 = 8
5 + 3 ## [1] 8
# 24 / (1 + 2) = 8
24 / (1 + 2) ## [1] 8
# 2 * 2 * 2 = 8
2^3 ## [1] 8
# 8 * 8 = 64
sqrt(64) ## [1] 8
# -log10(0.05 / 5000000) = 8
-log10(0.05 / 5000000) ## [1] 8
Functions
has many useful built in functions
1:10## [1] 1 2 3 4 5 6 7 8 9 10
as.character(1:10)## [1] "1" "2" "3" "4" "5" "6" "7" "8" "9" "10"
rep(1:2, times = 5)## [1] 1 2 1 2 1 2 1 2 1 2
rep(1:5, times = 2)## [1] 1 2 3 4 5 1 2 3 4 5
rep(1:5, each = 2)## [1] 1 1 2 2 3 3 4 4 5 5
rep(1:5, length.out = 7)## [1] 1 2 3 4 5 1 2
seq(5, 50, by = 5)## [1] 5 10 15 20 25 30 35 40 45 50
seq(5, 50, length.out = 5)## [1] 5.00 16.25 27.50 38.75 50.00
paste(1:10, 20:30, sep = "-")## [1] "1-20" "2-21" "3-22" "4-23" "5-24" "6-25" "7-26" "8-27" "9-28" "10-29" "1-30"
paste(1:10, collapse = "-")## [1] "1-2-3-4-5-6-7-8-9-10"
paste0("x", 1:10)## [1] "x1" "x2" "x3" "x4" "x5" "x6" "x7" "x8" "x9" "x10"
min(1:10)## [1] 1
max(1:10)## [1] 10
range(1:10)## [1] 1 10
mean(1:10)## [1] 5.5
sd(1:10)## [1] 3.02765
Custom Functions
Users can also create their own functions
customFunction1 <- function(x, y) {
z <- 100 * x / (x + y)
paste(z, "%")
}
customFunction1(x = 10, y = 90)## [1] "10 %"
customFunction2 <- function(x) {
mymin <- mean(x - sd(x))
mymax <- mean(x) + sd(x)
print(paste("Min =", mymin))
print(paste("Max =", mymax))
}
customFunction2(x = 1:10)## [1] "Min = 2.47234964590251"
## [1] "Max = 8.52765035409749"
for loops and if else
statements
xx <- NULL #creates and empty object
for(i in 1:10) {
xx[i] <- i*3
}
xx## [1] 3 6 9 12 15 18 21 24 27 30
xx %% 2 #gives the remainder when divided by 2## [1] 1 0 1 0 1 0 1 0 1 0
for(i in 1:length(xx)) {
if((xx[i] %% 2) == 0) {
print(paste(xx[i],"is Even"))
} else {
print(paste(xx[i],"is Odd"))
}
}## [1] "3 is Odd"
## [1] "6 is Even"
## [1] "9 is Odd"
## [1] "12 is Even"
## [1] "15 is Odd"
## [1] "18 is Even"
## [1] "21 is Odd"
## [1] "24 is Even"
## [1] "27 is Odd"
## [1] "30 is Even"
# or
ifelse(xx %% 2 == 0, "Even", "Odd")## [1] "Odd" "Even" "Odd" "Even" "Odd" "Even" "Odd" "Even" "Odd" "Even"
paste(xx, ifelse(xx %% 2 == 0, "is Even", "is Odd"))## [1] "3 is Odd" "6 is Even" "9 is Odd" "12 is Even" "15 is Odd" "18 is Even" "21 is Odd" "24 is Even" "27 is Odd" "30 is Even"
Objects
Information can be stored in user defined objects, in multiple forms:
c(): a string of valuesmatrix(): a two dimensional matrix in one formatdata.frame(): a two dimensional matrix where each column can be a different formatlist():
A string…
xc <- 1:10
xc## [1] 1 2 3 4 5 6 7 8 9 10
xc <- c(1,2,3,4,5,6,7,8,9,10)
xc## [1] 1 2 3 4 5 6 7 8 9 10
A matrix…
xm <- matrix(1:100, nrow = 10, ncol = 10, byrow = T)
xm## [,1] [,2] [,3] [,4] [,5] [,6] [,7] [,8] [,9] [,10]
## [1,] 1 2 3 4 5 6 7 8 9 10
## [2,] 11 12 13 14 15 16 17 18 19 20
## [3,] 21 22 23 24 25 26 27 28 29 30
## [4,] 31 32 33 34 35 36 37 38 39 40
## [5,] 41 42 43 44 45 46 47 48 49 50
## [6,] 51 52 53 54 55 56 57 58 59 60
## [7,] 61 62 63 64 65 66 67 68 69 70
## [8,] 71 72 73 74 75 76 77 78 79 80
## [9,] 81 82 83 84 85 86 87 88 89 90
## [10,] 91 92 93 94 95 96 97 98 99 100
xm <- matrix(1:100, nrow = 10, ncol = 10, byrow = F)
xm## [,1] [,2] [,3] [,4] [,5] [,6] [,7] [,8] [,9] [,10]
## [1,] 1 11 21 31 41 51 61 71 81 91
## [2,] 2 12 22 32 42 52 62 72 82 92
## [3,] 3 13 23 33 43 53 63 73 83 93
## [4,] 4 14 24 34 44 54 64 74 84 94
## [5,] 5 15 25 35 45 55 65 75 85 95
## [6,] 6 16 26 36 46 56 66 76 86 96
## [7,] 7 17 27 37 47 57 67 77 87 97
## [8,] 8 18 28 38 48 58 68 78 88 98
## [9,] 9 19 29 39 49 59 69 79 89 99
## [10,] 10 20 30 40 50 60 70 80 90 100
A data frame…
xd <- data.frame(
x1 = c("aa","bb","cc","dd","ee",
"ff","gg","hh","ii","jj"),
x2 = 1:10,
x3 = c(1,1,1,1,1,2,2,2,3,3),
x4 = rep(c(1,2), times = 5),
x5 = rep(1:5, times = 2),
x6 = rep(1:5, each = 2),
x7 = seq(5, 50, by = 5),
x8 = log10(1:10),
x9 = (1:10)^3,
x10 = c(T,T,T,F,F,T,T,F,F,F)
)
xd## x1 x2 x3 x4 x5 x6 x7 x8 x9 x10
## 1 aa 1 1 1 1 1 5 0.0000000 1 TRUE
## 2 bb 2 1 2 2 1 10 0.3010300 8 TRUE
## 3 cc 3 1 1 3 2 15 0.4771213 27 TRUE
## 4 dd 4 1 2 4 2 20 0.6020600 64 FALSE
## 5 ee 5 1 1 5 3 25 0.6989700 125 FALSE
## 6 ff 6 2 2 1 3 30 0.7781513 216 TRUE
## 7 gg 7 2 1 2 4 35 0.8450980 343 TRUE
## 8 hh 8 2 2 3 4 40 0.9030900 512 FALSE
## 9 ii 9 3 1 4 5 45 0.9542425 729 FALSE
## 10 jj 10 3 2 5 5 50 1.0000000 1000 FALSE
A list…
xl <- list(xc, xm, xd)
xl[[1]]## [1] 1 2 3 4 5 6 7 8 9 10
xl[[2]]## [,1] [,2] [,3] [,4] [,5] [,6] [,7] [,8] [,9] [,10]
## [1,] 1 11 21 31 41 51 61 71 81 91
## [2,] 2 12 22 32 42 52 62 72 82 92
## [3,] 3 13 23 33 43 53 63 73 83 93
## [4,] 4 14 24 34 44 54 64 74 84 94
## [5,] 5 15 25 35 45 55 65 75 85 95
## [6,] 6 16 26 36 46 56 66 76 86 96
## [7,] 7 17 27 37 47 57 67 77 87 97
## [8,] 8 18 28 38 48 58 68 78 88 98
## [9,] 9 19 29 39 49 59 69 79 89 99
## [10,] 10 20 30 40 50 60 70 80 90 100
xl[[3]]## x1 x2 x3 x4 x5 x6 x7 x8 x9 x10
## 1 aa 1 1 1 1 1 5 0.0000000 1 TRUE
## 2 bb 2 1 2 2 1 10 0.3010300 8 TRUE
## 3 cc 3 1 1 3 2 15 0.4771213 27 TRUE
## 4 dd 4 1 2 4 2 20 0.6020600 64 FALSE
## 5 ee 5 1 1 5 3 25 0.6989700 125 FALSE
## 6 ff 6 2 2 1 3 30 0.7781513 216 TRUE
## 7 gg 7 2 1 2 4 35 0.8450980 343 TRUE
## 8 hh 8 2 2 3 4 40 0.9030900 512 FALSE
## 9 ii 9 3 1 4 5 45 0.9542425 729 FALSE
## 10 jj 10 3 2 5 5 50 1.0000000 1000 FALSE
Selecting Data
xc[5] # 5th element in xc## [1] 5
xd$x3[5] # 5th element in col "x3"## [1] 1
xd[5,"x3"] # row 5, col "x3"## [1] 1
xd$x3 # all of col "x3"## [1] 1 1 1 1 1 2 2 2 3 3
xd[,"x3"] # all rows, col "x3"## [1] 1 1 1 1 1 2 2 2 3 3
xd[3,] # row 3, all cols## x1 x2 x3 x4 x5 x6 x7 x8 x9 x10
## 3 cc 3 1 1 3 2 15 0.4771213 27 TRUE
xd[c(2,4),c("x4","x5")] # rows 2 & 4, cols "x4" & "x5"## x4 x5
## 2 2 2
## 4 2 4
xl[[3]]$x1 # 3rd object in the list, col "x1## [1] "aa" "bb" "cc" "dd" "ee" "ff" "gg" "hh" "ii" "jj"
regexpr
xx <- data.frame(Name = c("Item 1 (detail 1)",
"Item 20 (detail 20)",
"Item 300 (detail 300)"),
Item = NA,
Detail = NA)
xx$Detail <- substr(xx$Name, regexpr("\\(", xx$Name)+1, regexpr("\\)", xx$Name)-1)
xx$Item <- substr(xx$Name, 1, regexpr("\\(", xx$Name)-2)
xx## Name Item Detail
## 1 Item 1 (detail 1) Item 1 detail 1
## 2 Item 20 (detail 20) Item 20 detail 20
## 3 Item 300 (detail 300) Item 300 detail 300
Data Formats
Data can also be saved in many formats:
- numeric
- integer
- character
- factor
- logical
xd$x3 <- as.character(xd$x3)
xd$x3## [1] "1" "1" "1" "1" "1" "2" "2" "2" "3" "3"
xd$x3 <- as.numeric(xd$x3)
xd$x3## [1] 1 1 1 1 1 2 2 2 3 3
xd$x3 <- as.factor(xd$x3)
xd$x3## [1] 1 1 1 1 1 2 2 2 3 3
## Levels: 1 2 3
xd$x3 <- factor(xd$x3, levels = c("3","2","1"))
xd$x3## [1] 1 1 1 1 1 2 2 2 3 3
## Levels: 3 2 1
xd$x10## [1] TRUE TRUE TRUE FALSE FALSE TRUE TRUE FALSE FALSE FALSE
as.numeric(xd$x10) # TRUE = 1, FALSE = 0## [1] 1 1 1 0 0 1 1 0 0 0
sum(xd$x10)## [1] 5
Internal structure of an object can be checked with
str()
str(xc) # c()## num [1:10] 1 2 3 4 5 6 7 8 9 10
str(xm) # matrix()## int [1:10, 1:10] 1 2 3 4 5 6 7 8 9 10 ...
str(xd) # data.frame()## 'data.frame': 10 obs. of 10 variables:
## $ x1 : chr "aa" "bb" "cc" "dd" ...
## $ x2 : int 1 2 3 4 5 6 7 8 9 10
## $ x3 : Factor w/ 3 levels "3","2","1": 3 3 3 3 3 2 2 2 1 1
## $ x4 : num 1 2 1 2 1 2 1 2 1 2
## $ x5 : int 1 2 3 4 5 1 2 3 4 5
## $ x6 : int 1 1 2 2 3 3 4 4 5 5
## $ x7 : num 5 10 15 20 25 30 35 40 45 50
## $ x8 : num 0 0.301 0.477 0.602 0.699 ...
## $ x9 : num 1 8 27 64 125 216 343 512 729 1000
## $ x10: logi TRUE TRUE TRUE FALSE FALSE TRUE ...
str(xl) # list()## List of 3
## $ : num [1:10] 1 2 3 4 5 6 7 8 9 10
## $ : int [1:10, 1:10] 1 2 3 4 5 6 7 8 9 10 ...
## $ :'data.frame': 10 obs. of 10 variables:
## ..$ x1 : chr [1:10] "aa" "bb" "cc" "dd" ...
## ..$ x2 : int [1:10] 1 2 3 4 5 6 7 8 9 10
## ..$ x3 : num [1:10] 1 1 1 1 1 2 2 2 3 3
## ..$ x4 : num [1:10] 1 2 1 2 1 2 1 2 1 2
## ..$ x5 : int [1:10] 1 2 3 4 5 1 2 3 4 5
## ..$ x6 : int [1:10] 1 1 2 2 3 3 4 4 5 5
## ..$ x7 : num [1:10] 5 10 15 20 25 30 35 40 45 50
## ..$ x8 : num [1:10] 0 0.301 0.477 0.602 0.699 ...
## ..$ x9 : num [1:10] 1 8 27 64 125 216 343 512 729 1000
## ..$ x10: logi [1:10] TRUE TRUE TRUE FALSE FALSE TRUE ...
Packages
Additional libraries can be installed and loaded for use.
install.packages("scales")library(scales)
xx <- data.frame(Values = 1:10)
xx$Rescaled <- rescale(x = xx$Values, to = c(1,30))
xx## Values Rescaled
## 1 1 1.000000
## 2 2 4.222222
## 3 3 7.444444
## 4 4 10.666667
## 5 5 13.888889
## 6 6 17.111111
## 7 7 20.333333
## 8 8 23.555556
## 9 9 26.777778
## 10 10 30.000000
libraries can also be used without having to load them
scales::rescale(1:10, to = c(1,30))## [1] 1.000000 4.222222 7.444444 10.666667 13.888889 17.111111 20.333333 23.555556 26.777778 30.000000
Data Wrangling
R for Data Science - https://r4ds.had.co.nz/
xx <- data.frame(Group = c("X","X","Y","Y","Y","X","X","X","Y","Y"),
Data1 = 1:10,
Data2 = seq(10, 100, by = 10))
xx$NewData1 <- xx$Data1 + xx$Data2
xx$NewData2 <- xx$Data1 * 1000
xx## Group Data1 Data2 NewData1 NewData2
## 1 X 1 10 11 1000
## 2 X 2 20 22 2000
## 3 Y 3 30 33 3000
## 4 Y 4 40 44 4000
## 5 Y 5 50 55 5000
## 6 X 6 60 66 6000
## 7 X 7 70 77 7000
## 8 X 8 80 88 8000
## 9 Y 9 90 99 9000
## 10 Y 10 100 110 10000
xx$Data1 < 5 # which are less than 5## [1] TRUE TRUE TRUE TRUE FALSE FALSE FALSE FALSE FALSE FALSE
xx[xx$Data1 < 5,]## Group Data1 Data2 NewData1 NewData2
## 1 X 1 10 11 1000
## 2 X 2 20 22 2000
## 3 Y 3 30 33 3000
## 4 Y 4 40 44 4000
xx[xx$Group == "X", c("Group","Data2","NewData1")]## Group Data2 NewData1
## 1 X 10 11
## 2 X 20 22
## 6 X 60 66
## 7 X 70 77
## 8 X 80 88
Data wrangling with tidyverse and pipes
(%>%)
library(tidyverse) # install.packages("tidyverse")
xx <- data.frame(Group = c("X","X","Y","Y","Y","Y","Y","X","X","X")) %>%
mutate(Data1 = 1:10,
Data2 = seq(10, 100, by = 10),
NewData1 = Data1 + Data2,
NewData2 = Data1 * 1000)
xx## Group Data1 Data2 NewData1 NewData2
## 1 X 1 10 11 1000
## 2 X 2 20 22 2000
## 3 Y 3 30 33 3000
## 4 Y 4 40 44 4000
## 5 Y 5 50 55 5000
## 6 Y 6 60 66 6000
## 7 Y 7 70 77 7000
## 8 X 8 80 88 8000
## 9 X 9 90 99 9000
## 10 X 10 100 110 10000
filter(xx, Data1 < 5)## Group Data1 Data2 NewData1 NewData2
## 1 X 1 10 11 1000
## 2 X 2 20 22 2000
## 3 Y 3 30 33 3000
## 4 Y 4 40 44 4000
xx %>% filter(Data1 < 5)## Group Data1 Data2 NewData1 NewData2
## 1 X 1 10 11 1000
## 2 X 2 20 22 2000
## 3 Y 3 30 33 3000
## 4 Y 4 40 44 4000
xx %>% filter(Group == "X") %>%
select(Group, NewColName=Data2, NewData1)## Group NewColName NewData1
## 1 X 10 11
## 2 X 20 22
## 3 X 80 88
## 4 X 90 99
## 5 X 100 110
xs <- xx %>%
group_by(Group) %>%
summarise(Data2_mean = mean(Data2),
Data2_sd = sd(Data2),
NewData2_mean = mean(NewData2),
NewData2_sd = sd(NewData2))
xs## # A tibble: 2 × 5
## Group Data2_mean Data2_sd NewData2_mean NewData2_sd
## <chr> <dbl> <dbl> <dbl> <dbl>
## 1 X 60 41.8 6000 4183.
## 2 Y 50 15.8 5000 1581.
xx %>% left_join(xs, by = "Group")## Group Data1 Data2 NewData1 NewData2 Data2_mean Data2_sd NewData2_mean NewData2_sd
## 1 X 1 10 11 1000 60 41.83300 6000 4183.300
## 2 X 2 20 22 2000 60 41.83300 6000 4183.300
## 3 Y 3 30 33 3000 50 15.81139 5000 1581.139
## 4 Y 4 40 44 4000 50 15.81139 5000 1581.139
## 5 Y 5 50 55 5000 50 15.81139 5000 1581.139
## 6 Y 6 60 66 6000 50 15.81139 5000 1581.139
## 7 Y 7 70 77 7000 50 15.81139 5000 1581.139
## 8 X 8 80 88 8000 60 41.83300 6000 4183.300
## 9 X 9 90 99 9000 60 41.83300 6000 4183.300
## 10 X 10 100 110 10000 60 41.83300 6000 4183.300
Read/Write data
xx <- read.csv("data_r_tutorial.csv")
write.csv(xx, "data_r_tutorial.csv", row.names = F)For excel sheets, the package readxl can be used to read
in sheets of data.
library(readxl) # install.packages("readxl")
xx <- read_xlsx("data_r_tutorial.xlsx", sheet = "Data")Tidy Data
- Tutorial 1 - https://cran.r-project.org/web/packages/tidyr/vignettes/tidy-data.html
- Tutorial 2 - https://r4ds.had.co.nz/tidy-data.html
yy <- xx %>%
group_by(Name, Location) %>%
summarise(Mean_DTF = round(mean(DTF),1)) %>%
arrange(Location)
yy## # A tibble: 9 × 3
## # Groups: Name [3]
## Name Location Mean_DTF
## <chr> <chr> <dbl>
## 1 CDC Maxim AGL Jessore, Bangladesh 86.7
## 2 ILL 618 AGL Jessore, Bangladesh 79.3
## 3 Laird AGL Jessore, Bangladesh 76.8
## 4 CDC Maxim AGL Metaponto, Italy 134.
## 5 ILL 618 AGL Metaponto, Italy 138.
## 6 Laird AGL Metaponto, Italy 137.
## 7 CDC Maxim AGL Saskatoon, Canada 52.5
## 8 ILL 618 AGL Saskatoon, Canada 47
## 9 Laird AGL Saskatoon, Canada 56.8
yy <- yy %>% spread(key = Location, value = Mean_DTF)
yy## # A tibble: 3 × 4
## # Groups: Name [3]
## Name `Jessore, Bangladesh` `Metaponto, Italy` `Saskatoon, Canada`
## <chr> <dbl> <dbl> <dbl>
## 1 CDC Maxim AGL 86.7 134. 52.5
## 2 ILL 618 AGL 79.3 138. 47
## 3 Laird AGL 76.8 137. 56.8
yy <- yy %>% gather(key = TraitName, value = Value, 2:4)
yy## # A tibble: 9 × 3
## # Groups: Name [3]
## Name TraitName Value
## <chr> <chr> <dbl>
## 1 CDC Maxim AGL Jessore, Bangladesh 86.7
## 2 ILL 618 AGL Jessore, Bangladesh 79.3
## 3 Laird AGL Jessore, Bangladesh 76.8
## 4 CDC Maxim AGL Metaponto, Italy 134.
## 5 ILL 618 AGL Metaponto, Italy 138.
## 6 Laird AGL Metaponto, Italy 137.
## 7 CDC Maxim AGL Saskatoon, Canada 52.5
## 8 ILL 618 AGL Saskatoon, Canada 47
## 9 Laird AGL Saskatoon, Canada 56.8
yy <- yy %>% spread(key = Name, value = Value)
yy## # A tibble: 3 × 4
## TraitName `CDC Maxim AGL` `ILL 618 AGL` `Laird AGL`
## <chr> <dbl> <dbl> <dbl>
## 1 Jessore, Bangladesh 86.7 79.3 76.8
## 2 Metaponto, Italy 134. 138. 137.
## 3 Saskatoon, Canada 52.5 47 56.8
Base Plotting
We will start with some basic plotting using the base function
plot()
# A basic scatter plot
plot(x = xd$x8, y = xd$x9)# Adjust color and shape of the points
plot(x = xd$x8, y = xd$x9, col = "darkred", pch = 0)plot(x = xd$x8, y = xd$x9, col = xd$x4, pch = xd$x4)# Adjust plot type
plot(x = xd$x8, y = xd$x9, type = "line")# Adjust linetype
plot(x = xd$x8, y = xd$x9, type = "line", lty = 2)# Plot lines and points
plot(x = xd$x8, y = xd$x9, type = "both")Now lets create some random and normally distributed data to make some more complicated plots
# 100 random uniformly distributed numbers ranging from 0 - 100
ru <- runif(100, min = 0, max = 100)
ru## [1] 55.5694465 51.8682460 37.1480337 54.7211600 20.3388271 56.5965889 66.6625880 36.7073759 22.4297598 52.4871859 97.0092973 90.3498709 15.1108826
## [14] 37.8042065 62.5606153 86.5578351 14.7635873 88.1262618 0.4160929 41.2614810 50.3018489 33.4921183 71.8414993 64.0304216 67.5010571 68.0651668
## [27] 66.2069425 30.4403345 63.8127316 29.6656730 93.0488122 28.3261486 78.0828708 95.7858618 43.5977862 79.5479651 72.2741662 40.9616451 97.6115743
## [40] 19.8879441 42.8878932 57.9347977 42.5182419 95.5237056 75.7112080 35.2627070 78.7971104 33.2576561 31.4952083 19.5632111 27.5759811 8.8605576
## [53] 53.8033354 89.2066176 34.5408253 63.6377240 58.0917491 64.6336562 52.4711330 79.3116058 42.2490602 16.8779654 3.5224163 18.3146109 68.6377802
## [66] 85.9006493 54.7485833 2.2616091 79.1353313 45.6512887 54.8434074 49.2849124 2.5985334 2.8642508 36.7571783 60.0814870 82.1577224 3.1699170
## [79] 64.6108891 64.2640175 27.8551026 26.8060754 29.3921767 66.8128824 75.4948634 43.3536424 51.6747260 53.8665285 36.9673662 33.1403143 90.1858957
## [92] 84.9146644 90.7378264 31.0366425 96.1302973 21.4520319 0.1629160 25.5305918 2.5313503 33.4860925
plot(x = ru)order(ru)## [1] 97 19 68 99 73 74 78 63 52 17 13 62 64 50 40 5 96 9 98 82 51 81 32 83 30 28 94 49 90 48 100 22 55 46 8 75
## [37] 89 3 14 38 20 61 43 41 86 35 70 72 21 87 2 59 10 53 88 4 67 71 1 6 42 57 76 15 56 29 24 80 79 58 27 7
## [73] 84 25 26 65 23 37 85 45 33 47 69 60 36 77 92 66 16 18 54 91 12 93 31 44 34 95 11 39
ru<- ru[order(ru)]
ru## [1] 0.1629160 0.4160929 2.2616091 2.5313503 2.5985334 2.8642508 3.1699170 3.5224163 8.8605576 14.7635873 15.1108826 16.8779654 18.3146109
## [14] 19.5632111 19.8879441 20.3388271 21.4520319 22.4297598 25.5305918 26.8060754 27.5759811 27.8551026 28.3261486 29.3921767 29.6656730 30.4403345
## [27] 31.0366425 31.4952083 33.1403143 33.2576561 33.4860925 33.4921183 34.5408253 35.2627070 36.7073759 36.7571783 36.9673662 37.1480337 37.8042065
## [40] 40.9616451 41.2614810 42.2490602 42.5182419 42.8878932 43.3536424 43.5977862 45.6512887 49.2849124 50.3018489 51.6747260 51.8682460 52.4711330
## [53] 52.4871859 53.8033354 53.8665285 54.7211600 54.7485833 54.8434074 55.5694465 56.5965889 57.9347977 58.0917491 60.0814870 62.5606153 63.6377240
## [66] 63.8127316 64.0304216 64.2640175 64.6108891 64.6336562 66.2069425 66.6625880 66.8128824 67.5010571 68.0651668 68.6377802 71.8414993 72.2741662
## [79] 75.4948634 75.7112080 78.0828708 78.7971104 79.1353313 79.3116058 79.5479651 82.1577224 84.9146644 85.9006493 86.5578351 88.1262618 89.2066176
## [92] 90.1858957 90.3498709 90.7378264 93.0488122 95.5237056 95.7858618 96.1302973 97.0092973 97.6115743
plot(x = ru)# 100 normally distributed numbers with a mean of 50 and sd of 10
nd <- rnorm(100, mean = 50, sd = 10)
nd## [1] 39.87135 63.70456 53.57578 63.97860 50.37333 43.52808 49.36636 42.09711 33.85043 42.68929 43.86652 47.83637 39.74320 61.70552 50.35415 54.69504
## [17] 64.26075 51.96296 54.71708 53.20708 21.74044 54.90124 42.60193 44.76787 64.66821 41.96896 54.32294 46.25623 55.75094 37.07164 63.41905 54.40258
## [33] 56.18433 36.61804 53.66412 55.28284 32.83294 45.90756 53.86609 60.59321 61.39229 48.13521 48.64232 57.93615 46.46757 51.93358 47.90620 46.33346
## [49] 50.62541 63.09949 66.23414 53.57604 48.25558 56.22399 51.78776 55.58962 22.69316 64.54113 42.28900 50.27884 50.79364 52.69273 38.19627 55.30697
## [65] 42.47767 49.78955 34.81936 52.17825 43.51665 39.02269 40.01830 49.96705 40.51696 58.17945 53.22550 59.73276 47.63728 35.10078 51.54358 55.33780
## [81] 44.12085 62.56636 40.19332 56.36562 35.95704 45.86096 37.36556 52.31104 44.62305 78.42725 54.62866 48.12488 61.27265 58.73527 45.97636 69.68208
## [97] 38.51763 51.53943 55.48506 58.92049
nd <- nd[order(nd)]
nd## [1] 21.74044 22.69316 32.83294 33.85043 34.81936 35.10078 35.95704 36.61804 37.07164 37.36556 38.19627 38.51763 39.02269 39.74320 39.87135 40.01830
## [17] 40.19332 40.51696 41.96896 42.09711 42.28900 42.47767 42.60193 42.68929 43.51665 43.52808 43.86652 44.12085 44.62305 44.76787 45.86096 45.90756
## [33] 45.97636 46.25623 46.33346 46.46757 47.63728 47.83637 47.90620 48.12488 48.13521 48.25558 48.64232 49.36636 49.78955 49.96705 50.27884 50.35415
## [49] 50.37333 50.62541 50.79364 51.53943 51.54358 51.78776 51.93358 51.96296 52.17825 52.31104 52.69273 53.20708 53.22550 53.57578 53.57604 53.66412
## [65] 53.86609 54.32294 54.40258 54.62866 54.69504 54.71708 54.90124 55.28284 55.30697 55.33780 55.48506 55.58962 55.75094 56.18433 56.22399 56.36562
## [81] 57.93615 58.17945 58.73527 58.92049 59.73276 60.59321 61.27265 61.39229 61.70552 62.56636 63.09949 63.41905 63.70456 63.97860 64.26075 64.54113
## [97] 64.66821 66.23414 69.68208 78.42725
plot(x = nd)hist(x = nd)hist(nd, breaks = 20, col = "darkgreen")plot(x = density(nd))boxplot(x = nd)boxplot(x = nd, horizontal = T)ggplot2
Lets be honest, the base plots are ugly! The ggplot2
package gives the user to create a better, more visually appealing
plots. Additional packages such as ggbeeswarm and
ggrepel also contain useful functions to add to the
functionality of ggplot2.
- ggplot2 - https://ggplot2.tidyverse.org/
- Tutorial 1 - http://r-statistics.co/ggplot2-Tutorial-With-R.html
- Tutorial 2 - https://www.statsandr.com/blog/graphics-in-r-with-ggplot2/
- The R Graph Gallery - https://www.r-graph-gallery.com/ggplot2-package.html
library(ggplot2)
mp <- ggplot(xd, aes(x = x8, y = x9))
mp + geom_point()mp + geom_point(aes(color = x3, shape = x3), size = 4)mp + geom_line(size = 2)mp + geom_line(aes(color = x3), size = 2)mp + geom_smooth(method = "loess")mp + geom_smooth(method = "lm")xx <- data.frame(data = c(rnorm(50, mean = 40, sd = 10),
rnorm(50, mean = 60, sd = 5)),
group = factor(rep(1:2, each = 50)),
label = c("Label1", rep(NA, 49), "Label2", rep(NA, 49)))
mp <- ggplot(xx, aes(x = data, fill = group))
mp + geom_histogram(color = "black")mp + geom_histogram(color = "black", position = "dodge")mp1 <- mp + geom_histogram(color = "black") + facet_grid(group~.)
mp1mp + geom_density(alpha = 0.5)mp <- ggplot(xx, aes(x = group, y = data, fill = group))
mp + geom_boxplot(color = "black")mp + geom_boxplot() + geom_point()mp + geom_violin() + geom_boxplot(width = 0.1, fill = "white")library(ggbeeswarm)
mp + geom_quasirandom()mp + geom_quasirandom(aes(shape = group))mp2 <- mp + geom_violin() +
geom_boxplot(width = 0.1, fill = "white") +
geom_beeswarm(alpha = 0.5)
library(ggrepel)
mp2 + geom_text_repel(aes(label = label), nudge_x = 0.4)library(ggpubr)
ggarrange(mp1, mp2, ncol = 2, widths = c(2,1),
common.legend = T, legend = "bottom")Statistics
- Handbook of Biological Statistics - http://biostathandbook.com/
- R Companion for ^ - https://rcompanion.org/rcompanion/a_02.html
# Prep data
lev_Loc <- c("Saskatoon, Canada", "Jessore, Bangladesh", "Metaponto, Italy")
lev_Name <- c("ILL 618 AGL", "CDC Maxim AGL", "Laird AGL")
dd <- read_xlsx("data_r_tutorial.xlsx", sheet = "Data") %>%
mutate(Location = factor(Location, levels = lev_Loc),
Name = factor(Name, levels = lev_Name))
xx <- dd %>%
group_by(Name, Location) %>%
summarise(Mean_DTF = mean(DTF))
xx %>% spread(Location, Mean_DTF)## # A tibble: 3 × 4
## # Groups: Name [3]
## Name `Saskatoon, Canada` `Jessore, Bangladesh` `Metaponto, Italy`
## <fct> <dbl> <dbl> <dbl>
## 1 ILL 618 AGL 47 79.3 138.
## 2 CDC Maxim AGL 52.5 86.7 134.
## 3 Laird AGL 56.8 76.8 137.
# Plot
mp1 <- ggplot(dd, aes(x = Location, y = DTF, color = Name, shape = Name)) +
geom_point(size = 2, alpha = 0.7, position = position_dodge(width=0.5))
mp2 <- ggplot(xx, aes(x = Location, y = Mean_DTF,
color = Name, group = Name, shape = Name)) +
geom_point(size = 2.5, alpha = 0.7) +
geom_line(size = 1, alpha = 0.7) +
theme(legend.position = "top")
ggarrange(mp1, mp2, ncol = 2, common.legend = T, legend = "top")From first glace, it is clear there are differences between genotypes, locations, and genotype x environment (GxE) interactions. Now let’s do a few statistical tests.
summary(aov(DTF ~ Name * Location, data = dd))## Df Sum Sq Mean Sq F value Pr(>F)
## Name 2 88 44 3.476 0.0395 *
## Location 2 65863 32931 2598.336 < 2e-16 ***
## Name:Location 4 560 140 11.044 2.52e-06 ***
## Residuals 45 570 13
## ---
## Signif. codes: 0 '***' 0.001 '**' 0.01 '*' 0.05 '.' 0.1 ' ' 1
As expected, an ANOVA shows statistical significance for genotype (p-value = 0.0395), Location (p-value < 2e-16) and GxE interactions (p-value < 2.52e-06). However, all this tells us is that one genotype is different from the rest, one location is different from the others and that there is GxE interactions. If we want to be more specific, would need to do some multiple comparison tests.
If we only have two things to compare, we could do a t-test.
xx <- dd %>%
filter(Location %in% c("Saskatoon, Canada", "Jessore, Bangladesh")) %>%
spread(Location, DTF)
t.test(x = xx$`Saskatoon, Canada`, y = xx$`Jessore, Bangladesh`)##
## Welch Two Sample t-test
##
## data: xx$`Saskatoon, Canada` and xx$`Jessore, Bangladesh`
## t = -17.521, df = 32.701, p-value < 2.2e-16
## alternative hypothesis: true difference in means is not equal to 0
## 95 percent confidence interval:
## -32.18265 -25.48402
## sample estimates:
## mean of x mean of y
## 52.11111 80.94444
DTF in Saskatoon, Canada is significantly different (p-value < 2.2e-16) from DTF in Jessore, Bangladesh.
xx <- dd %>%
filter(Name %in% c("ILL 618 AGL", "Laird AGL"),
Location == "Metaponto, Italy") %>%
spread(Name, DTF)
t.test(x = xx$`ILL 618 AGL`, y = xx$`Laird AGL`)##
## Welch Two Sample t-test
##
## data: xx$`ILL 618 AGL` and xx$`Laird AGL`
## t = 0.38008, df = 8.0564, p-value = 0.7137
## alternative hypothesis: true difference in means is not equal to 0
## 95 percent confidence interval:
## -5.059739 7.059739
## sample estimates:
## mean of x mean of y
## 137.8333 136.8333
DTF between ILL 618 AGL and Laird AGL are not significantly different (p-value = 0.7137) in Metaponto, Italy.
pch Plot
xx <- data.frame(x = rep(1:6, times = 5, length.out = 26),
y = rep(5:1, each = 6, length.out = 26),
pch = 0:25)
mp <- ggplot(xx, aes(x = x, y = y, shape = as.factor(pch))) +
geom_point(color = "darkred", fill = "darkblue", size = 5) +
geom_text(aes(label = pch), nudge_x = -0.25) +
scale_shape_manual(values = xx$pch) +
scale_x_continuous(breaks = 6:1) +
scale_y_continuous(breaks = 6:1) +
theme_void() +
theme(legend.position = "none",
plot.title = element_text(hjust = 0.5),
plot.subtitle = element_text(hjust = 0.5),
axis.text = element_blank(),
axis.ticks = element_blank()) +
labs(title = "Plot symbols in R (pch)",
subtitle = "color = \"darkred\", fill = \"darkblue\"",
x = NULL, y = NULL)
ggsave("pch.png", mp, width = 4.5, height = 3, bg = "white")R Markdown
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